CENI: a Hybrid Framework for Efficiently Inferring Information Networks
Qingbo Hu, Sihong Xie, Shuyang Lin, Senzhang Wang, Philip, Yu

TL;DR
This paper introduces CENI, a hybrid framework that improves the efficiency of inferring hidden message diffusion networks by clustering nodes in a projected space, significantly reducing computation time while maintaining accuracy.
Contribution
The paper proposes a novel two-step framework, CENI, which integrates clustering and projection techniques to enhance network inference efficiency and accuracy.
Findings
CENI reduces inference time to 20-50% of existing methods.
Projection-based CENI outperforms state-of-the-art in accuracy.
Clustering in a projected Euclidean space better preserves cascade structure.
Abstract
Nowadays, the message diffusion links among users or websites drive the development of countless innovative applications. However, in reality, it is easier for us to observe the timestamps when different nodes in the network react on a message, while the connections empowering the diffusion of the message remain hidden. This motivates recent extensive studies on the network inference problem: unveiling the edges from the records of messages disseminated through them. Existing solutions are computationally expensive, which motivates us to develop an efficient two-step general framework, Clustering Embedded Network Inference (CENI). CENI integrates clustering strategies to improve the efficiency of network inference. By clustering nodes directly on the timelines of messages, we propose two naive implementations of CENI: Infection-centric CENI and Cascade-centric CENI. Additionally, we…
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Taxonomy
TopicsComplex Network Analysis Techniques · Advanced Graph Neural Networks · Mental Health Research Topics
